Covid - 19大流行期间学生在线学习的数据挖掘算法的比较

Muhammad Saiful, Hariman Bahtiar, Amri Muliawan Nur, Yupi Kuspandi Putra
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引用次数: 0

摘要

抽样技术采用目的抽样法。本研究旨在描述学生在covid-19大流行后使用在线媒体学习的完整程度。本研究使用了一种分类算法,其功能是找到一个区分数据类别或数据概念的模型,其具体目标是确定未知对象标签的类别。使用的方法是基于pso的Naïve贝叶斯和Naïve贝叶斯比较算法。本研究结果表明,在在线学习过程中,使用naïve贝叶斯算法的在线媒体使用率为83.91%,使用基于pso的naïve贝叶斯算法的在线媒体使用率为91.98%,从两种算法的实验结果和测试中,可以得到混淆矩阵和AUC测试的结果,可以确定精度值最好的是基于pso的Naïve贝叶斯算法。对比Naïve贝叶斯算法得到的准确率值为83.91%,与基于pso的Naïve贝叶斯算法得到的准确率值为91.98%,准确率差值为8.07%,因此可以得出结论,适用于covid - 19大流行期间学生学习完整性分类的算法是基于粒子群优化的朴素贝叶斯算法。
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Komparasi Algoritma Data Mining Dalam Ketuntasan Belajar Daring Siswa Pada Masa Pandemi Covid 19
This research was conducted at SMA Negri 3 Selong and became the focus of students in class XI IPA and Social Studies. The sampling technique used purposive sampling method. This study aims to describe the extent to which the level of completeness of students during post-covid-19 pandemic learning with online media. This study uses a classification algorithm that functions to find a model that distinguishes data classes or data concepts, with the specific objective of determining the class of unknown object labels. The method used is the PSO-based Naïve Bayes and Naïve Bayes Comparison Algorithms. The results of this study indicate that the use of online media during online learning using the naïve Bayes algorithm is 83.91%, and the PSO-based naïve Bayes algorithm is 91.98%, from the experimental results and testing of the two algorithms, the results of the confusion matrix and AUC testing can be obtained which can be determined the best accuracy value is the PSO-based Naïve Bayes algorithm. As for the comparison of the results in the form of an accuracy value obtained by the Naïve Bayes Algorithm of 83.91% and the PSO-Based Naïve Bayes Algorithm of 91.98% and the difference in the level of accuracy of 8.07%, so it can be concluded that the algorithm that is suitable for classifying student learning completeness during the covid 19 pandemic is Naive Bayes based on particle swarm optimization.
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